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Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data

BACKGROUND: As control efforts progress towards elimination, malaria is likely to become more spatially concentrated in few local areas. The purpose of this study was to quantify and characterise spatial heterogeneity in malaria transmission-intensity across highly endemic Indonesian Papua. METHODS:...

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Autores principales: Fadilah, Ihsan, Djaafara, Bimandra A., Lestari, Karina D., Fajariyani, Sri B., Sunandar, Edi, Makamur, Billy G., Wopari, Beeri, Mabui, Silas, Ekawati, Lenny L., Sagara, Rahmat, Lina, Rosa N., Argana, Guntur, Ginting, Desriana E., Sumiwi, Maria E., Laihad, Ferdinand J., Mueller, Ivo, McVernon, Jodie, Baird, J. Kevin, Surendra, Henry, Elyazar, Iqbal R.F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10305992/
https://www.ncbi.nlm.nih.gov/pubmed/37383667
http://dx.doi.org/10.1016/j.lansea.2022.100051
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author Fadilah, Ihsan
Djaafara, Bimandra A.
Lestari, Karina D.
Fajariyani, Sri B.
Sunandar, Edi
Makamur, Billy G.
Wopari, Beeri
Mabui, Silas
Ekawati, Lenny L.
Sagara, Rahmat
Lina, Rosa N.
Argana, Guntur
Ginting, Desriana E.
Sumiwi, Maria E.
Laihad, Ferdinand J.
Mueller, Ivo
McVernon, Jodie
Baird, J. Kevin
Surendra, Henry
Elyazar, Iqbal R.F.
author_facet Fadilah, Ihsan
Djaafara, Bimandra A.
Lestari, Karina D.
Fajariyani, Sri B.
Sunandar, Edi
Makamur, Billy G.
Wopari, Beeri
Mabui, Silas
Ekawati, Lenny L.
Sagara, Rahmat
Lina, Rosa N.
Argana, Guntur
Ginting, Desriana E.
Sumiwi, Maria E.
Laihad, Ferdinand J.
Mueller, Ivo
McVernon, Jodie
Baird, J. Kevin
Surendra, Henry
Elyazar, Iqbal R.F.
author_sort Fadilah, Ihsan
collection PubMed
description BACKGROUND: As control efforts progress towards elimination, malaria is likely to become more spatially concentrated in few local areas. The purpose of this study was to quantify and characterise spatial heterogeneity in malaria transmission-intensity across highly endemic Indonesian Papua. METHODS: We analysed individual-level malaria surveillance data for nearly half a million cases (2019–2020) reported in the Papua and West Papua provinces and adapted the Gini index approach to quantify spatial heterogeneity at the district and health-unit levels. In this context, high Gini index implies disproportionately distributed malaria cases across the region. We showed malaria incidence trends and the spatial and temporal distribution of sociodemographic characteristics and aetiological parasites among cases. FINDINGS: While Papua province accounted for the majority of malaria cases reported in the region and had seen a rise in transmission since 2015, West Papua province had maintained a comparatively low incidence. We observed that Gini index estimates were high, particularly when the lower spatial scale of health units was evaluated. The Gini index appears to be inversely associated to annual parasite-incidence, as well as the proportions of vivax malaria, male sex, and adults. INTERPRETATION: This study suggests that areas with varying levels of transmission-intensities exhibited distinct characteristics. Malaria was distributed in a markedly disproportionate manner throughout the region, emphasising the need for spatially targeted interventions. Periodic quantification and characterisation of risk heterogeneity at various spatial levels using routine malaria surveillance data may aid in tracking progress towards elimination and guiding evidence-informed prioritisation of resource allocation. FUNDING: The study was funded by the Australian Government Department of Foreign Affairs and Trade Indo-Pacific Centre for Health Security through the Strengthening Preparedness in the Asia-Pacific Region through Knowledge (SPARK) project.
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spelling pubmed-103059922023-06-28 Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data Fadilah, Ihsan Djaafara, Bimandra A. Lestari, Karina D. Fajariyani, Sri B. Sunandar, Edi Makamur, Billy G. Wopari, Beeri Mabui, Silas Ekawati, Lenny L. Sagara, Rahmat Lina, Rosa N. Argana, Guntur Ginting, Desriana E. Sumiwi, Maria E. Laihad, Ferdinand J. Mueller, Ivo McVernon, Jodie Baird, J. Kevin Surendra, Henry Elyazar, Iqbal R.F. Lancet Reg Health Southeast Asia Articles BACKGROUND: As control efforts progress towards elimination, malaria is likely to become more spatially concentrated in few local areas. The purpose of this study was to quantify and characterise spatial heterogeneity in malaria transmission-intensity across highly endemic Indonesian Papua. METHODS: We analysed individual-level malaria surveillance data for nearly half a million cases (2019–2020) reported in the Papua and West Papua provinces and adapted the Gini index approach to quantify spatial heterogeneity at the district and health-unit levels. In this context, high Gini index implies disproportionately distributed malaria cases across the region. We showed malaria incidence trends and the spatial and temporal distribution of sociodemographic characteristics and aetiological parasites among cases. FINDINGS: While Papua province accounted for the majority of malaria cases reported in the region and had seen a rise in transmission since 2015, West Papua province had maintained a comparatively low incidence. We observed that Gini index estimates were high, particularly when the lower spatial scale of health units was evaluated. The Gini index appears to be inversely associated to annual parasite-incidence, as well as the proportions of vivax malaria, male sex, and adults. INTERPRETATION: This study suggests that areas with varying levels of transmission-intensities exhibited distinct characteristics. Malaria was distributed in a markedly disproportionate manner throughout the region, emphasising the need for spatially targeted interventions. Periodic quantification and characterisation of risk heterogeneity at various spatial levels using routine malaria surveillance data may aid in tracking progress towards elimination and guiding evidence-informed prioritisation of resource allocation. FUNDING: The study was funded by the Australian Government Department of Foreign Affairs and Trade Indo-Pacific Centre for Health Security through the Strengthening Preparedness in the Asia-Pacific Region through Knowledge (SPARK) project. Elsevier 2022-08-05 /pmc/articles/PMC10305992/ /pubmed/37383667 http://dx.doi.org/10.1016/j.lansea.2022.100051 Text en © 2022 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Articles
Fadilah, Ihsan
Djaafara, Bimandra A.
Lestari, Karina D.
Fajariyani, Sri B.
Sunandar, Edi
Makamur, Billy G.
Wopari, Beeri
Mabui, Silas
Ekawati, Lenny L.
Sagara, Rahmat
Lina, Rosa N.
Argana, Guntur
Ginting, Desriana E.
Sumiwi, Maria E.
Laihad, Ferdinand J.
Mueller, Ivo
McVernon, Jodie
Baird, J. Kevin
Surendra, Henry
Elyazar, Iqbal R.F.
Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data
title Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data
title_full Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data
title_fullStr Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data
title_full_unstemmed Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data
title_short Quantifying spatial heterogeneity of malaria in the endemic Papua region of Indonesia: Analysis of epidemiological surveillance data
title_sort quantifying spatial heterogeneity of malaria in the endemic papua region of indonesia: analysis of epidemiological surveillance data
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10305992/
https://www.ncbi.nlm.nih.gov/pubmed/37383667
http://dx.doi.org/10.1016/j.lansea.2022.100051
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